Diffusion Models for Wireless Transceivers: From Pilot-Efficient Channel Estimation to AI-Native 6G Receivers
By: Yuzhi Yang , Sen Yan , Weijie Zhou and more
Potential Business Impact:
AI helps phones send and receive signals better.
With the development of artificial intelligence (AI) techniques, implementing AI-based techniques to improve wireless transceivers becomes an emerging research topic. Within this context, AI-based channel characterization and estimation become the focus since these methods have not been solved by traditional methods very well and have become the bottleneck of transceiver efficiency in large-scale orthogonal frequency division multiplexing (OFDM) systems. Specifically, by formulating channel estimation as a generative AI problem, generative AI methods such as diffusion models (DMs) can efficiently deal with rough initial estimations and have great potential to cooperate with traditional signal processing methods. This paper focuses on the transceiver design of OFDM systems based on DMs, provides an illustration of the potential of DMs in wireless transceivers, and points out the related research directions brought by DMs. We also provide a proof-of-concept case study of further adapting DMs for better wireless receiver performance.
Similar Papers
Conditional Diffusion Model-Enabled Scenario-Specific Neural Receivers for Superimposed Pilot Schemes
Information Theory
Creates realistic data to train better wireless signals.
Diffusion Models for Future Networks and Communications: A Comprehensive Survey
Machine Learning (CS)
Makes wireless networks smarter and faster
Generative AI Meets 6G and Beyond: Diffusion Models for Semantic Communications
Signal Processing
Lets phones send messages with fewer words.